Utilize este identificador para referenciar este registo: https://hdl.handle.net/10316/105483
Título: Review on Machine Learning Techniques for Developing Pavement Performance Prediction Models
Autor: Justo-Silva, Rita 
Ferreira, Adelino 
Flintsch, Gerardo 
Palavras-chave: pavement performance prediction models; modeling techniques; machine learning
Data: 2021
Editora: MDPI
Projeto: MIT-Portugal grant (PD/BD/113721/2015) 
Título da revista, periódico, livro ou evento: Sustainability (Switzerland)
Volume: 13
Número: 9
Resumo: Road transportation has always been inherent in developing societies, impacting between 10–20% of Gross Domestic Product (GDP). It is responsible for personal mobility (access to services, goods, and leisure), and that is why world economies rely upon the efficient and safe functioning of transportation facilities. Road maintenance is vital since the need for maintenance increases as road infrastructure ages and is based on sustainability, meaning that spending money now saves much more in the future. Furthermore, road maintenance plays a significant role in road safety. However, pavement management is a challenging task because available budgets are limited. Road agencies need to set programming plans for the short term and the long term to select and schedule maintenance and rehabilitation operations. Pavement performance prediction models (PPPMs) are a crucial element in pavement management systems (PMSs), providing the prediction of distresses and, therefore, allowing active and efficient management. This work aims to review the modeling techniques that are commonly used in the development of these models. The pavement deterioration process is stochastic by nature. It requires complex deterministic or probabilistic modeling techniques, which will be presented here, as well as the advantages and disadvantages of each of them. Finally, conclusions will be drawn, and some guidelines to support the development of PPPMs will be proposed.
URI: https://hdl.handle.net/10316/105483
ISSN: 2071-1050
DOI: 10.3390/su13095248
Direitos: openAccess
Aparece nas coleções:I&D CITTA - Artigos em Revistas Internacionais

Mostrar registo em formato completo

Citações SCOPUSTM   

46
Visto em 15/jul/2024

Citações WEB OF SCIENCETM

35
Visto em 2/jul/2024

Visualizações de página

88
Visto em 16/jul/2024

Downloads

116
Visto em 16/jul/2024

Google ScholarTM

Verificar

Altmetric

Altmetric


Este registo está protegido por Licença Creative Commons Creative Commons